Purpose: In digital histopathology, virtual multi-staining is important for diagnosis and biomarker research. Additionally, it provides accurate ground-truth for various deep-learning tasks. Virtual multi-staining can be obtained using different stains for consecutive sections or by re-staining the same section. Both approaches require image registration to compensate tissue deformations, but little attention has been devoted to comparing their accuracy. Approach: We compare variational image registration of consecutive and re-stained sections and analyze the effect of the image resolution which influences accuracy and required computational resources. We present a new hybrid dataset of re-stained and consecutive sections (HyReCo, 81 slide pairs, approx. 3000 landmarks) that we made publicly available and compare its image registration results to the automatic non-rigid histological image registration (ANHIR) challenge data (230 consecutive slide pairs). Results: We obtain a median landmark error after registration of 7.1 {\mu}m (HyReCo) and 16.0 {\mu}m (ANHIR) between consecutive sections. Between re-stained sections, the median registration error is 2.3 {\mu}m and 0.9 {\mu}m in the two subsets of the HyReCo dataset. We observe that deformable registration leads to lower landmark errors than affine registration in both cases, though the effect is smaller in re-stained sections. Conclusion: Deformable registration of consecutive and re-stained sections is a valuable tool for the joint analysis of different stains. Significance: While the registration of re-stained sections allows nucleus-level alignment which allows for a direct analysis of interacting biomarkers, consecutive sections only allow the transfer of region-level annotations. The latter can be achieved at low computational cost using coarser image resolutions.
翻译:目的 : 在数字生理病理学中, 虚拟多保存对于诊断和生物标志研究很重要 。 此外, 它为各种深层学习任务提供了准确的地面真相 。 虚拟多保存可以使用连续部分的不同污点获取 。 两种方法都需要图像登记以弥补组织变形, 但很少注意比较其准确性 。 方法 : 我们比较连续和再保存部分的变异图像登记, 分析图像解析影响准确性和所需计算资源的效果 。 我们展示了更新和连续部分( HyReCo, 81个幻灯片配对, 约3000个标志) 的新的混合数据集 。 我们公开提供图像登记结果并将其图像登记结果与自动不固定的图像登记结果对比( 230个连续的幻灯片配对) 。 结果 : 我们在注册 71 \ mum( HyReecoal) 和 16. 0 mu} (ANHUIR) 之间的连续部分( ) 更新和连续部分( HyReReReRe real dead) ad real dead dead deal deal deal deal deal deal deal dal dal dal deal dal dal dal dal deal deal deal laction) 。 在两个部分之间, 节中, 我们的中, 中, 我们的注册记录记录记录记录记录记录记录记录记录记录记录记录记录记录是直接数据是用于算法数据记录记录记录为直接数据记录数据记录数据记录为持续数据缩算法是直接。